Optimization Management Method of Artificial Intelligence for Building Physical Environment
博士 === 國立臺北科技大學 === 設計學院設計博士班 === 107 === Using the trend prediction function of artificial intelligence to assist in processing a large amount of information generated in the physical environment of the building, and maintaining the technical and energy consumption corresponding to the quality...
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ndltd-TW-107TIT007190032019-07-06T05:58:28Z http://ndltd.ncl.edu.tw/handle/44w73m Optimization Management Method of Artificial Intelligence for Building Physical Environment 建築物理環境之人工智慧管理優化方式研究 WU,CHIN-PAO 吳進寶 博士 國立臺北科技大學 設計學院設計博士班 107 Using the trend prediction function of artificial intelligence to assist in processing a large amount of information generated in the physical environment of the building, and maintaining the technical and energy consumption corresponding to the quality of the indoor environment of the building. Benefit management in saving construction costs and reducing operating costs can be positively beneficial, and in terms of situation management, optimization and individualized needs can be achieved. This research method establishes the ANN model in different programming languages, and collects the interactive experimental PMV of the existing building environment using the existing people as the main experimental data, and eliminates the data that cannot be typed into the ANN and then splits the analysis. And design the ANN model through the iterative training of supervised learning to the accurate artificial neural network model training ANN model and can be fast and fast fitting, the research results calculate the weight and weight bias value, the process analysis gets the standard way of ANN model design, as each time The ANN model re-establishes and references the method of inputting big data. The contribution of the research is: 1. The data of the building physical environment needs to be shunted and then designed with the appropriate ANN model and the indicators obtained after training can be moved to the next level of the ANN model to continue the calculation. 2. The ANN model established by Matlab and the computational function Levenberg-Marquardt is suitable for winter PMV prediction and knows that the data of continuous data stream is adapted to the ANN model type. 3. The designed ANN model is applicable to the establishment of sound, light, heat, air of quality and energy saving in the building physical environment. CHOU,DING-CHIN TSAI,JEN-HUI 周鼎金 蔡仁惠 2019 學位論文 ; thesis 114 zh-TW |
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博士 === 國立臺北科技大學 === 設計學院設計博士班 === 107 === Using the trend prediction function of artificial intelligence to assist in processing a large amount of information generated in the physical environment of the building, and maintaining the technical and energy consumption corresponding to the quality of the indoor environment of the building. Benefit management in saving construction costs and reducing operating costs can be positively beneficial, and in terms of situation management, optimization and individualized needs can be achieved. This research method establishes the ANN model in different programming languages, and collects the interactive experimental PMV of the existing building environment using the existing people as the main experimental data, and eliminates the data that cannot be typed into the ANN and then splits the analysis. And design the ANN model through the iterative training of supervised learning to the accurate artificial neural network model training ANN model and can be fast and fast fitting, the research results calculate the weight and weight bias value, the process analysis gets the standard way of ANN model design, as each time The ANN model re-establishes and references the method of inputting big data.
The contribution of the research is:
1. The data of the building physical environment needs to be shunted and then designed with the appropriate ANN model and the indicators obtained after training can be moved to the next level of the ANN model to continue the calculation.
2. The ANN model established by Matlab and the computational function Levenberg-Marquardt is suitable for winter PMV prediction and knows that the data of continuous data stream is adapted to the ANN model type.
3. The designed ANN model is applicable to the establishment of sound, light, heat, air of quality and energy saving in the building physical environment.
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CHOU,DING-CHIN |
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CHOU,DING-CHIN WU,CHIN-PAO 吳進寶 |
author |
WU,CHIN-PAO 吳進寶 |
spellingShingle |
WU,CHIN-PAO 吳進寶 Optimization Management Method of Artificial Intelligence for Building Physical Environment |
author_sort |
WU,CHIN-PAO |
title |
Optimization Management Method of Artificial Intelligence for Building Physical Environment |
title_short |
Optimization Management Method of Artificial Intelligence for Building Physical Environment |
title_full |
Optimization Management Method of Artificial Intelligence for Building Physical Environment |
title_fullStr |
Optimization Management Method of Artificial Intelligence for Building Physical Environment |
title_full_unstemmed |
Optimization Management Method of Artificial Intelligence for Building Physical Environment |
title_sort |
optimization management method of artificial intelligence for building physical environment |
publishDate |
2019 |
url |
http://ndltd.ncl.edu.tw/handle/44w73m |
work_keys_str_mv |
AT wuchinpao optimizationmanagementmethodofartificialintelligenceforbuildingphysicalenvironment AT wújìnbǎo optimizationmanagementmethodofartificialintelligenceforbuildingphysicalenvironment AT wuchinpao jiànzhúwùlǐhuánjìngzhīréngōngzhìhuìguǎnlǐyōuhuàfāngshìyánjiū AT wújìnbǎo jiànzhúwùlǐhuánjìngzhīréngōngzhìhuìguǎnlǐyōuhuàfāngshìyánjiū |
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